Link Inference in Dynamic Heterogeneous Information Network: A Knapsack-Based Approach

被引:6
作者
Jia Y. [1 ]
Wang Y. [1 ]
Jin X. [1 ]
Zhao Z. [1 ]
Cheng X. [1 ]
机构
[1] CAS Key Laboratory of Network Data Science and Technology, Institute of Computing Technology, Chinese Academy of Sciences, Beijing
基金
中国国家自然科学基金;
关键词
Dynamic heterogeneous information network; knapsack problem; link inference;
D O I
10.1109/TCSS.2017.2715069
中图分类号
学科分类号
摘要
Link inference, i.e., inferring links between vertices in a heterogeneous information network with heterogeneous vertices and edges, has been extensively studied in recent years. So far, many machine learning-based methods have been proposed for link inference, which can be classified into two categories, namely, supervised and unsupervised. Supervised methods perform well but highly rely on feature selection and training data. Although unsupervised methods are inferior to supervised ones, they work in a relatively simple way without considering the class distribution of the training data. In this paper, we investigate the link inference problem in heterogeneous information networks by proposing a knapsack-constrained inference method. Specifically, we integrate dynamic information into the heterogeneous information network and further formalize the link inference problem as a knapsack-like problem. We then solve it by the virtue of a 0-1 knapsack analogous optimization approach and investigate the time complexity of the proposed approach. Finally, experimental results show that the proposed unsupervised method can obtain high performance comparable to supervised method for some cases. © 2014 IEEE.
引用
收藏
页码:80 / 92
页数:12
相关论文
共 40 条
[1]  
Backstrom L., Leskovec J., Supervised random walks: Predicting and recommending links in social networks, Proc. 4th ACM Int. Conf. Web Search Data Mining, pp. 635-644, (2011)
[2]  
Sun Y., Han J., Mining heterogeneous information networks: Principles and methodologies, Synth. Lect. Data Mining Knowl. Discovery, 3, 2, pp. 1-159, (2012)
[3]  
Sun Y., Han J., Aggarwal C.C., Chawla N.V., When will it happen?: Relationship prediction in heterogeneous information networks, Proc. 5th ACM Int. Conf. Web Search Data Mining, pp. 663-672, (2012)
[4]  
Sun Y., Han J., Mining heterogeneous information networks: A structural analysis approach, ACM SIGKDD Explorations Newslett., 14, 2, pp. 20-28, (2013)
[5]  
Cho E., Myers S.A., Leskovec J., Friendship and mobility: User movement in location-based social networks, Proc. 17th ACM SIGKDD Int. Conf. Knowl. Discovery Data Mining, pp. 1082-1090, (2011)
[6]  
Davis D., Lichtenwalter R., Chawla N.V., Multi-relational link prediction in heterogeneous information networks, Proc. Int. Conf. Adv. Social Netw. Anal. Mining (ASONAM), pp. 281-288, (2011)
[7]  
Lee J.B., Adorna H., Link prediction in a modified heterogeneous bibliographic network, Proc. IEEE/ACM Int. Conf. Adv. Social Netw. Anal. Mining (ASONAM), pp. 442-449, (2012)
[8]  
Popescul A., Ungar L.H., Statistical relational learning for link prediction, Proc. IJCAI Workshop Learn. Statist. Models from Relational Data, 2003, pp. 81-90, (2003)
[9]  
Rossetti G., Berlingerio M., Giannotti F., Scalable link prediction on multidimensional networks, Proc. IEEE 11th Int. Conf. Data Mining Workshops (ICDMW), pp. 979-986, (2011)
[10]  
Sun Y., Barber R., Gupta M., Aggarwal C.C., Han J., Co-author relationship prediction in heterogeneous bibliographic networks, Proc. Int. Conf. Adv. Social Netw. Anal. Mining (ASONAM), pp. 121-128, (2011)